On Fair and Efficient Allocations of Indivisible Public Goods

J. Garg, Pooja Kulkarni, Aniket Murhekar
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引用次数: 8

Abstract

We study fair allocation of indivisible public goods subject to cardinality (budget) constraints. In this model, we have n agents and m available public goods, and we want to select k ≤ m goods in a fair and efficient manner. We first establish fundamental connections between the models of private goods, public goods, and public decision making by presenting polynomial-time reductions for the popular solution concepts of maximum Nash welfare (MNW) and leximin. These mechanisms are known to provide remarkable fairness and efficiency guarantees in private goods and public decision making settings. We show that they retain these desirable properties even in the public goods case. We prove that MNW allocations provide fairness guarantees of Proportionality up to one good (Prop1), 1/n approximation to Round Robin Share (RRS), and the efficiency guarantee of Pareto Optimality (PO). Further, we show that the problems of finding MNW or leximin-optimal allocations are NP-hard, even in the case of constantly many agents, or binary valuations. This is in sharp contrast to the private goods setting that admits polynomial-time algorithms under binary valuations. We also design pseudo-polynomial time algorithms for computing an exact MNW or leximin-optimal allocation for the cases of (i) constantly many agents, and (ii) constantly many goods with additive valuations. We also present an O(n)-factor approximation algorithm for MNW which also satisfies RRS, Prop1, and 1/2-Prop. 2012 ACM Subject Classification Theory of computation → Mathematical optimization
论不可分割公共物品的公平有效分配
研究了受基数(预算)约束的不可分割公共品的公平分配问题。在这个模型中,我们有n个代理人和m个可用的公共物品,我们希望公平有效地选择k≤m个物品。我们首先通过提出最大纳什福利(MNW)和leximin的流行解概念的多项式时间约简,建立了私人物品、公共物品和公共决策模型之间的基本联系。众所周知,这些机制在私人物品和公共决策环境中提供了显著的公平和效率保证。我们表明,即使在公共产品的情况下,它们也保留了这些理想的属性。我们证明了MNW分配提供了比例性的公平性保证(Prop1),轮循共享(RRS)的1/n近似,以及帕累托最优性(PO)的效率保证。此外,我们表明,即使在不断有许多代理或二元估值的情况下,寻找MNW或leximin最优分配的问题也是np困难的。这与在二元估值下允许多项式时间算法的私人物品设置形成鲜明对比。我们还设计了伪多项式时间算法,用于计算以下情况下的精确MNW或leximin-optimal分配:(i)不断有许多代理,(ii)不断有许多具有附加估值的商品。我们还提出了一种O(n)因子逼近MNW算法,该算法同时满足RRS、Prop1和1/2-Prop。2012 ACM学科分类计算理论→数学优化
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